Credit card fraud detection through advanced machine learning techniques
Date
2024-10Publisher
BRAC UniversityAuthor
Sarker, Md Sadman FaiyazJahan, Israk
Munna, Kamran Hossain
Mahadi, MD Muntasir
Rumman, Yamin Kabir
Metadata
Show full item recordAbstract
Nowadays, digital and electronic transactions and electronic payments systems in
modern days have become convenient but now it is a major challenge to face credit
card fraud. Modern fraud patterns are so complex and advanced nowadays that
the traditional fraud detection methods are facing difficulties to detect them. The
research demonstrates how effective these patterns are for getting the high accuracy
from the imbalance dataset. The implications of these results are contemporary for
financial manage-ment, which offer the potential to strengthen the integrity of finances,
allocate and strengthen customer trust in the face of evolving fraud threats.
Multiple methods are now implemented to track the rising credit card fraud. But
in this project, it determines the performance of 4 methods : Artificial Neural Networks,
Support Vector Machines, Random Forest and XGBoost, using more than
one dataset to evaluate their effectiveness in detecting fraudulent activ-ities. The
observation includes explainable artificial intelligence (XAI) strategies. By detecting
crucial elements such as transaction amount and date, the approach provides insight
into versions that improve forecast transparency and reliability. The results show
that combined models, particularly Random Forest and XG Boost, outperformed
other approaches in terms of Accuracy, Precision, Recall, and F1-Score. The integration
of LIME and SHAP adds a layer of interpretability, allowing stake-holders
to understand the rationale behind the models’ decisions. This paper shows how the
advanced machine learning models with explainability techniques creates a more effective
and transparent fraud detection system. Including showing that XG Boost is
the most effective algorithm with the highest test accuracy. Besides, this model has
performed very well in accordance with precision, recall, F1-Score and accuracy than
the other ML models. Despite the possibility that ANN shows strong predic-tive
power in specific scenarios, its complexity limits scalability and accuracy. Here, Accuracy
of fraud detection and interpretability of the models offer an efficient solution
for resisting increasingly sophisticated fraud threats in the real world.